A Methodology Framework for Bipartite Network Modeling

Author:

Liew Chin Ying1,Labadin Jane2,Kok Woon Chee2,Eze Monday Okpoto3

Affiliation:

1. Universiti Teknologi MARA

2. Universiti Malaysia Sarawak

3. Babcock University

Abstract

Abstract The graph-theoretic based studies employing bipartite network approach mostly focus on surveying the statistical properties of the structure and behavior of the network systems under the domain of complex network analysis. They aim to provide the big-picture-view insights of a networked system by looking into the dynamic interaction and relationship among the vertices. Nonetheless, incorporating the features of individual vertex and capturing the dynamic interaction of the heterogeneous local rules governing each of them in the studies is lacking. The methodology in achieving this could hardly be found. Consequently, this study intends to propose a methodology framework that considers the influence of heterogeneous features of each node to the overall network behavior in modeling real-world bipartite network system. The proposed framework consists of three main stages with principal processes detailed in each stage, and three libraries of techniques to guide the modeling activities. It is iterative and process-oriented in nature and allows future network expansion. Two case studies from the domain of communicable disease in epidemiology and habitat suitability in ecology employing this framework are also presented. The results obtained suggest that the methodology could serve as a generic framework in advancing the current state of the art of bipartite network approach.

Publisher

Research Square Platform LLC

Reference73 articles.

1. Spatial density of Aedes distribution in urban areas: a case study of breteau index in Kuala Lumpur, Malaysia;Aziz S;J Vector Borne Dis,2014

2. Network science;Barabási AL;Phil Trans R Soc A,2013

3. Barnes B, Fulford GR (2014) Mathematical modelling with case studies: Using Maple and MATLAB, 3rd edn. CRC Press, Boca Raton

4. Connectance and nestedness as stabilizing factors in response to pulse disturbances in adaptive antagonistic networks;Baumgartner MT;J Theor Biol,2020

5. Meteoio 2.4.2: a preprocessing library for meteorological data;Bavay M;Geosci Model Dev,2014

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